The Peter Grünberg Institute - Neuromorphic Software Eco Systems (PGI-15), led by Prof. Dr. Emre Neftci, explores neuromorphic computing technologies that learn and work like the brain. In line with this mission, we draw inspiration from the structure and function of biological neurons to inform the design of more efficient and powerful learning systems. Neurons in the brain receive most of their inputs on dendritic trees, where signals are integrated through biophysical processes operating on long time-scales. These dendritic dynamics represent a collection of latent states, which can be used to dynamically store information. The type of activation and input-output functions implemented by dendrites improve the expressivity of neurons, decrease energy consumption, and mitigate the inherent variability and noise in the neuronal circuit. However, to date, it is not well understood how these properties can be effectively leveraged to improve artificial intelligence models.
Join our team to the next possible date as
Student Assistant / Master Thesis - Dendritic Subunits to Bridge Timescales in Spiking Neuronal Network Learning
Activities and responsibilities
- Designing dendritic modules in PyTorch that can be embedded within spiking neural architectures
- Training and evaluation of these enhanced networks on sequence learning tasks and comparing their performance against state-of-the-art sequence learning models
- Investigation of these models in light of recent advancements in selective state space models (SSMs), aiming to bridge the dynamics and working principles of SSMs with the dendrite-augmented spiking neural networks
Qualification profile
- Current master studies in physics, computer science, mathematics, electrical / electronic engineering, or a related science or engineering field
- Strong background in mathematics, e.g., probability theory, linear algebra, differential / integral calculus
- Prior programming experience in Python is a must, C++ and CUDA experience is a plus
- Hands-on experience in working with neural simulators (NEST, Brian, etc.) and/or machine learning frameworks (PyTorch, Tensorflow, etc.) is a plus
- Experience with spiking neural networks and/or neuromorphic computing is a plus
We offer
- A world-leading, interdisciplinary and international research environment, provided with state-of-the-art experimental equipment and versatile opportunities
- An interesting and relevant topic for your thesis with a future-oriented focus
- Qualified support through your scientific colleagues
- The chance to independently prepare and work on your tasks
- Flexible working hours as well as a reasonable remuneration
In addition to exciting tasks and a collaborative working atmosphere at Jülich, we have a lot more to offer: https://go.fzj.de/benefits.
We welcome applications from people with diverse backgrounds, e.g., in terms of age, gender, disability, personal orientation / identity, and social, ethnic, and religious origin. A diverse and inclusive working environment with equal opportunities, in which everyone can realize their potential, is important to us.
Further information on diversity and equal opportunities can be found at https://go.fzj.de/equality.
We look forward to receiving your application. The job will be advertised until the position has been successfully filled. You should therefore submit your application as soon as possible via our Online Recruitment System: https://www.fz-juelich.de/de/karriere/stellenangebote/2025M-058?apply
Contact Form:If your questions have not yet been answered via our FAQs (https://www.fz-juelich.de/en/careers/application-information/faq), please send us a message via our contact form: https://www.fz-juelich.de/de/karriere/stellenangebote/2025M-058?contact
Please note that for technical reasons we cannot accept applications by e-mail.
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